作者
Minghua Chen, Soung Chang Liew, Ziyu Shao, Caihong Kai
发表日期
2013/10
研讨会论文
IEEE Transactions on Information Theory
卷号
59
期号
10
页码范围
6301-6327
简介
Many important network design problems are fundamentally combinatorial optimization problems. A large number of such problems, however, cannot readily be tackled by distributed algorithms. The Markov approximation framework studied in this paper is a general technique for synthesizing distributed algorithms. We show that when using the log-sum-exp function to approximate the optimal value of any combinatorial problem, we end up with a solution that can be interpreted as the stationary probability distribution of a class of time-reversible Markov chains. Selected Markov chains among this class yield distributed algorithms that solve the log-sum-exp approximated combinatorial network optimization problem. By examining three applications, we illustrate that the Markov approximation technique not only provides fresh perspectives to existing distributed solutions, but also provides clues leading to the …
引用总数
2012201320142015201620172018201920202021202220232024911121631262523211521264
学术搜索中的文章
M Chen, SC Liew, Z Shao, C Kai - IEEE transactions on information theory, 2013